Detecting caries lesions of different radiographic extension on bitewings using deep learning

被引:166
作者
Cantu, Anselmo Garcia [1 ]
Gehrung, Sascha [1 ]
Krois, Joachim [1 ]
Chaurasia, Akhilanand [2 ]
Rossi, Jesus Gomez [1 ]
Gaudin, Robert [3 ,4 ,5 ,6 ]
Elhennawy, Karim [7 ]
Schwendicke, Falk [1 ]
机构
[1] Charite Univ Med Berlin, Dept Oral Diagnost Digital Hlth & Hlth Serv Res, Assmannshauser Str 4-6, D-14197 Berlin, Germany
[2] King Georges Med Univ, Dept Oral Med & Radiol, Lucknow, Uttar Pradesh, India
[3] Charite Univ Med Berlin, Dept Oral & Maxillofacial Surg, Berlin, Germany
[4] Free Univ Berlin, Berlin, Germany
[5] Humboldt Univ, Berlin, Germany
[6] Berlin Inst Hlth, Berlin, Germany
[7] Charite Univ Med Berlin, Dept Orthodont Dentofacial Orthoped & Pedodont, Berlin, Germany
关键词
Artificial intelligence; Caries; Digital imaging/radiology; Mathematical modeling; Radiography; DIAGNOSIS;
D O I
10.1016/j.jdent.2020.103425
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objectives: We aimed to apply deep learning to detect caries lesions of different radiographic extension on bi-tewings, hypothesizing it to be significantly more accurate than individual dentists. Methods: 3686 bitewing radiographs were assessed by four experienced dentists. Caries lesions were marked in a pixelwise fashion. The union of all pixels was defined as reference test. The data was divided into a training (3293), validation (252) and test dataset (141). We applied a convolutional neural network (U-Net) and used the Intersection-over-Union as validation metric. The performance of the trained neural network on the test dataset was compared against that of seven independent using tooth-level accuracy metrics. Stratification according to lesion depth (enamel lesions E1/2, dentin lesions into middle or inner third D2/3) was applied. Results: The neural network showed an accuracy of 0.80; dentists' mean accuracy was significantly lower at 0.71 (min-max: 0.61-0.78, p 0.05). The neural network was significantly more sensitive than dentists (0.75 versus 0.36 (0.19-0.65; p = 0.006), while its specificity was not significantly lower (0.83) than those of the dentists (0.91 (0.69-0.98; p 0.05); p > 0.05). The neural network showed robust sensitivities at or above 0.70 for both initial and advanced lesions. Dentists largely showed low sensitivities for initial lesions (all except one dentist showed sensitivities below 0.25), while those for advanced ones were between 0.40 and 0.75. Conclusions: To detect caries lesions on bitewing radiographs, a deep neural network was significantly more accurate than dentists. Clinical significance: Deep learning may assist dentists to detect especially initial caries lesions on bitewings. The impact of using such models on decision-making should be explored.
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页数:8
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共 26 条
  • [1] [Anonymous], 2015, Nature, DOI [DOI 10.1038/NATURE14539, 10.1038/nature14539]
  • [2] Deep Learning in Mammography Diagnostic Accuracy of a Multipurpose Image Analysis Software in the Detection of Breast Cancer
    Becker, Anton S.
    Marcon, Magda
    Ghafoor, Soleen
    Wurnig, Moritz C.
    Frauenfelder, Thomas
    Boss, Andreas
    [J]. INVESTIGATIVE RADIOLOGY, 2017, 52 (07) : 434 - 440
  • [3] Global, Regional, and National Levels and Trends in Burden of Oral Conditions from 1990 to 2017: A Systematic Analysis for the Global Burden of Disease 2017 Study
    Bernabe, E.
    Marcenes, W.
    Hernandez, C. R.
    Bailey, J.
    Abreu, L. G.
    Alipour, V
    Amini, S.
    Arabloo, J.
    Arefi, Z.
    Arora, A.
    Ayanore, M. A.
    Baernighausen, T. W.
    Chan, T. H.
    Bijani, A.
    Cho, D. Y.
    Chu, D. T.
    Crowe, C. S.
    Demoz, G. T.
    Demsie, D. G.
    Forooshani, Z. S. Dibaji
    Du, M.
    El Tantawi, M.
    Fischer, F.
    Folayan, M. O.
    Futran, N. D.
    Geramo, Y. C. D.
    Haj-Mirzaian, A.
    Hariyani, N.
    Hasanzadeh, A.
    Hassanipour, S.
    Hay, S., I
    Hole, M. K.
    Hostiuc, S.
    Ilic, M. D.
    James, S. L.
    Kalhor, R.
    Kemmer, L.
    Keramati, M.
    Khader, Y. S.
    Kisa, S.
    Kisa, A.
    Koyanagi, A.
    Lalloo, R.
    Le Nguyen, Q.
    London, S. D.
    Manohar, N. D.
    Massenburg, B. B.
    Mathur, M. R.
    Meles, H. G.
    Mestrovic, T.
    [J]. JOURNAL OF DENTAL RESEARCH, 2020, 99 (04) : 362 - 373
  • [4] Bossuyt PM, 2015, BMJ-BRIT MED J, V351, DOI [10.1136/bmj.h5527, 10.1373/clinchem.2015.246280, 10.1148/radiol.2015151516]
  • [5] Variations in caries diagnoses and treatment recommendations and their impacts on the costs of oral health care
    da Silva, R. P.
    Meneghim, M. C.
    Correr, A. B.
    Pereira, A. C.
    Ambrosano, G. M. B.
    Mialhe, F. L.
    [J]. COMMUNITY DENTAL HEALTH, 2012, 29 (01) : 25 - 28
  • [6] Ekert T., 2018, BUILDING MASS ONLINE
  • [7] Deep Learning for the Radiographic Detection of Apical Lesions
    Ekert, Thomas
    Krois, Joachim
    Meinhold, Leonie
    Elhennawy, Karim
    Emara, Ramy
    Golla, Tatiana
    Schwendicke, Falk
    [J]. JOURNAL OF ENDODONTICS, 2019, 45 (07) : 917 - 922
  • [8] RADIOGRAPHIC CARIES DIAGNOSIS BY CLINICIAN IN NORWAY AND WESTERN-AUSTRALIA
    ESPELID, I
    TVEIT, AB
    RIORDAN, PJ
    [J]. COMMUNITY DENTISTRY AND ORAL EPIDEMIOLOGY, 1994, 22 (04) : 214 - 219
  • [9] Dermatologist-level classification of skin cancer with deep neural networks
    Esteva, Andre
    Kuprel, Brett
    Novoa, Roberto A.
    Ko, Justin
    Swetter, Susan M.
    Blau, Helen M.
    Thrun, Sebastian
    [J]. NATURE, 2017, 542 (7639) : 115 - +
  • [10] Radiographic diagnosis of proximal caries-influence of experience and gender of the dental staff
    Geibel, Margrit-Ann
    Carstens, S.
    Braisch, U.
    Rahman, A.
    Herz, M.
    Jablonski-Momeni, A.
    [J]. CLINICAL ORAL INVESTIGATIONS, 2017, 21 (09) : 2761 - 2770